Liquid AI Releases LFM2.5-8B-A1B: An On-Device MoE Model With 8.3B Total and 1.5B Active Parameters
Quick Take
Liquid AI has launched the LFM2.5-8B-A1B, an on-device Mixture of Experts (MoE) model featuring 8.3 billion total parameters with 1.5 billion active parameters. This model supports 128K context, reasoning, and tool calling capabilities on consumer hardware, enhancing performance for end-users.
Key Points
- LFM2.5-8B-A1B features 8.3 billion total parameters with 1.5 billion active.
- Model supports 128K context for enhanced reasoning capabilities.
- On-device deployment allows for efficient performance on consumer hardware.
- Liquid AI targets improved user experience with advanced AI functionalities.
Article Excerpt
From source RSS / original summaryLiquid AI's LFM2. 5-8B-A1B activates 1. 5B of 8. 3B parameters, offering 128K context, reasoning, and tool calling on consumer hardware. The post Liquid AI Releases LFM2. 5-8B-A1B: An On-Device MoE Model With 8. 3B Total and 1. 5B Active Parameters appeared first on MarkTechPost.
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